Cargando…
A Perspective on Plant Phenomics: Coupling Deep Learning and Near-Infrared Spectroscopy
The trait-based approach in plant ecology aims at understanding and classifying the diversity of ecological strategies by comparing plant morphology and physiology across organisms. The major drawback of the approach is that the time and financial cost of measuring the traits on many individuals and...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9163986/ https://www.ncbi.nlm.nih.gov/pubmed/35668791 http://dx.doi.org/10.3389/fpls.2022.836488 |
_version_ | 1784720036910333952 |
---|---|
author | Vasseur, François Cornet, Denis Beurier, Grégory Messier, Julie Rouan, Lauriane Bresson, Justine Ecarnot, Martin Stahl, Mark Heumos, Simon Gérard, Marianne Reijnen, Hans Tillard, Pascal Lacombe, Benoît Emanuel, Amélie Floret, Justine Estarague, Aurélien Przybylska, Stefania Sartori, Kevin Gillespie, Lauren M. Baron, Etienne Kazakou, Elena Vile, Denis Violle, Cyrille |
author_facet | Vasseur, François Cornet, Denis Beurier, Grégory Messier, Julie Rouan, Lauriane Bresson, Justine Ecarnot, Martin Stahl, Mark Heumos, Simon Gérard, Marianne Reijnen, Hans Tillard, Pascal Lacombe, Benoît Emanuel, Amélie Floret, Justine Estarague, Aurélien Przybylska, Stefania Sartori, Kevin Gillespie, Lauren M. Baron, Etienne Kazakou, Elena Vile, Denis Violle, Cyrille |
author_sort | Vasseur, François |
collection | PubMed |
description | The trait-based approach in plant ecology aims at understanding and classifying the diversity of ecological strategies by comparing plant morphology and physiology across organisms. The major drawback of the approach is that the time and financial cost of measuring the traits on many individuals and environments can be prohibitive. We show that combining near-infrared spectroscopy (NIRS) with deep learning resolves this limitation by quickly, non-destructively, and accurately measuring a suite of traits, including plant morphology, chemistry, and metabolism. Such an approach also allows to position plants within the well-known CSR triangle that depicts the diversity of plant ecological strategies. The processing of NIRS through deep learning identifies the effect of growth conditions on trait values, an issue that plagues traditional statistical approaches. Together, the coupling of NIRS and deep learning is a promising high-throughput approach to capture a range of ecological information on plant diversity and functioning and can accelerate the creation of extensive trait databases. |
format | Online Article Text |
id | pubmed-9163986 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-91639862022-06-05 A Perspective on Plant Phenomics: Coupling Deep Learning and Near-Infrared Spectroscopy Vasseur, François Cornet, Denis Beurier, Grégory Messier, Julie Rouan, Lauriane Bresson, Justine Ecarnot, Martin Stahl, Mark Heumos, Simon Gérard, Marianne Reijnen, Hans Tillard, Pascal Lacombe, Benoît Emanuel, Amélie Floret, Justine Estarague, Aurélien Przybylska, Stefania Sartori, Kevin Gillespie, Lauren M. Baron, Etienne Kazakou, Elena Vile, Denis Violle, Cyrille Front Plant Sci Plant Science The trait-based approach in plant ecology aims at understanding and classifying the diversity of ecological strategies by comparing plant morphology and physiology across organisms. The major drawback of the approach is that the time and financial cost of measuring the traits on many individuals and environments can be prohibitive. We show that combining near-infrared spectroscopy (NIRS) with deep learning resolves this limitation by quickly, non-destructively, and accurately measuring a suite of traits, including plant morphology, chemistry, and metabolism. Such an approach also allows to position plants within the well-known CSR triangle that depicts the diversity of plant ecological strategies. The processing of NIRS through deep learning identifies the effect of growth conditions on trait values, an issue that plagues traditional statistical approaches. Together, the coupling of NIRS and deep learning is a promising high-throughput approach to capture a range of ecological information on plant diversity and functioning and can accelerate the creation of extensive trait databases. Frontiers Media S.A. 2022-05-20 /pmc/articles/PMC9163986/ /pubmed/35668791 http://dx.doi.org/10.3389/fpls.2022.836488 Text en Copyright © 2022 Vasseur, Cornet, Beurier, Messier, Rouan, Bresson, Ecarnot, Stahl, Heumos, Gérard, Reijnen, Tillard, Lacombe, Emanuel, Floret, Estarague, Przybylska, Sartori, Gillespie, Baron, Kazakou, Vile and Violle. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. |
spellingShingle | Plant Science Vasseur, François Cornet, Denis Beurier, Grégory Messier, Julie Rouan, Lauriane Bresson, Justine Ecarnot, Martin Stahl, Mark Heumos, Simon Gérard, Marianne Reijnen, Hans Tillard, Pascal Lacombe, Benoît Emanuel, Amélie Floret, Justine Estarague, Aurélien Przybylska, Stefania Sartori, Kevin Gillespie, Lauren M. Baron, Etienne Kazakou, Elena Vile, Denis Violle, Cyrille A Perspective on Plant Phenomics: Coupling Deep Learning and Near-Infrared Spectroscopy |
title | A Perspective on Plant Phenomics: Coupling Deep Learning and Near-Infrared Spectroscopy |
title_full | A Perspective on Plant Phenomics: Coupling Deep Learning and Near-Infrared Spectroscopy |
title_fullStr | A Perspective on Plant Phenomics: Coupling Deep Learning and Near-Infrared Spectroscopy |
title_full_unstemmed | A Perspective on Plant Phenomics: Coupling Deep Learning and Near-Infrared Spectroscopy |
title_short | A Perspective on Plant Phenomics: Coupling Deep Learning and Near-Infrared Spectroscopy |
title_sort | perspective on plant phenomics: coupling deep learning and near-infrared spectroscopy |
topic | Plant Science |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9163986/ https://www.ncbi.nlm.nih.gov/pubmed/35668791 http://dx.doi.org/10.3389/fpls.2022.836488 |
work_keys_str_mv | AT vasseurfrancois aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT cornetdenis aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT beuriergregory aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT messierjulie aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT rouanlauriane aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT bressonjustine aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT ecarnotmartin aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT stahlmark aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT heumossimon aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT gerardmarianne aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT reijnenhans aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT tillardpascal aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT lacombebenoit aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT emanuelamelie aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT floretjustine aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT estaragueaurelien aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT przybylskastefania aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT sartorikevin aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT gillespielaurenm aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT baronetienne aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT kazakouelena aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT viledenis aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT viollecyrille aperspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT vasseurfrancois perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT cornetdenis perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT beuriergregory perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT messierjulie perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT rouanlauriane perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT bressonjustine perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT ecarnotmartin perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT stahlmark perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT heumossimon perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT gerardmarianne perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT reijnenhans perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT tillardpascal perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT lacombebenoit perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT emanuelamelie perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT floretjustine perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT estaragueaurelien perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT przybylskastefania perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT sartorikevin perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT gillespielaurenm perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT baronetienne perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT kazakouelena perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT viledenis perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy AT viollecyrille perspectiveonplantphenomicscouplingdeeplearningandnearinfraredspectroscopy |